论文标题
Fortnet,用于培训Beller-Parrinello神经网络的软件包
Fortnet, a software package for training Behler-Parrinello neural networks
论文作者
论文摘要
已经开发了一个新的开源,平行的独立软件包(FORTNET),它实现了Behler-Parrinello神经网络。它涵盖了从特征产生到评估生成电位的整个工作流程,再加上更高级别的分析,例如原子力的分析计算。软件包的功能是通过推动密度功能紧密结合(DFTB)方法的拟合校正函数的训练来证明的,该方法通常用于补偿DFTB近似与Kohn-Sham hamiltonian近似近似的不准确性。这些校正函数的通常的两体形式限制了非常不同的结构环境之间参数化的可传递性。最近引入的DFTB+ANN方法致力于通过将DFTB与近视的人工神经网络(ANN)结合起来来提高这些局限性。在研究了各种方法之后,我们发现DFTB与某些基线校正函数(Delta学习)的ANN作用的组合是最有希望的。它允许在两体参数化之上引入多体校正,而可以证明对具有偏离能量的化学环境的出色传递性可以证明。
A new, open source, parallel, stand-alone software package (Fortnet) has been developed, which implements Behler-Parrinello neural networks. It covers the entire workflow from feature generation to the evaluation of generated potentials, coupled with higher-level analysis such as the analytic calculation of atomic forces. The functionality of the software package is demonstrated by driving the training for the fitted correction functions of the density functional tight binding (DFTB) method, which are commonly used to compensate the inaccuracies resulting from the DFTB approximations to the Kohn-Sham Hamiltonian. The usual two-body form of those correction functions limits the transferability of the parameterizations between very different structural environments. The recently introduced DFTB+ANN approach strives to lift these limitations by combining DFTB with a near-sighted artificial neural network (ANN). After investigating various approaches, we have found the combination of DFTB with an ANN acting on-top of some baseline correction functions (delta learning) the most promising one. It allowed to introduce many-body corrections on top of two-body parametrizations, while excellent transferability to chemical environments with deviating energetics could be demonstrated.